Methods and systems for improving display resolution using sub-pixel sampling and visual error compensation

ABSTRACT

Embodiments of the present invention provide systems and methods for converting a high-resolution image to a lower-resolution image with reduced visible errors. These systems and methods comprise a sub-pixel sampling simulation performed on a high-resolution image to determine an error introduced into the high-resolution image as a result of sub-pixel sampling. This error may be isolated from the high-resolution image to create an error image which may be modified with a visual model to remove invisible errors thereby creating a visible error image. The visual error image may then be combined with said high-resolution image to create a compensated image that will substantially cancel the error introduced as a result of subsequent sub-pixel sampling when the sub-pixel sampling occurs.

CROSS-REFERENCE TO RELATED APPLICATIONS

This application is a continuation of U.S. patent application Ser. No. 09/735,454, filed on Dec. 12, 2000 now U.S. Pat. No. 6,775,420 and invented by Scott J. Daly; this application is also a continuation of U.S. patent application Ser. No. 10/447,186, filed on May 27, 2003 and invented by Dean Messing, Scott J. Daly and Rajesh Reddy Kovvuri; which both claim the benefit of U.S. Provisional patent application No. 60/211,020, filed Jun. 12, 2000.

THE FIELD OF THE INVENTION

Embodiments of the present invention relate to the field of displaying high resolution images on displays with lower resolution, where the displays use a triad arrangement to display the R, G, and B components of the image. This triad arrangement is common in direct view LCD displays, for example, and in such an arrangement a single pixel is composed of 3 side-by-side subpixels. Each subpixel controls only one of the three primaries (i.e., R, G and B) and is, in turn, usually controlled solely by the primaries of the digital image representation. The high-resolution image may be available in memory, or may be available directly from an algorithm (vector graphics, some font designs, and computer graphics).

BACKGROUND

The most commonly used method for displaying high-resolution images on a lower resolution display is to sample the pixels 2 of the high-resolution image 4 down to the resolution of the low-resolution display 6, as shown in FIG. 1. Then, the R, G, B values of each downsampled color pixel 8 are mapped to the separate R, G, B elements 10, 12 and 14 of each display pixel 16. These R, G, B elements 10, 12 and 14 of a display pixel are also referred to as subpixels. Because the display device does not allow overlapping color elements, the subpixels can only take on one of the three R, G, or B colors, however, the color's amplitude can be varied throughout the entire greyscale range (e.g., 0–255). The subpixels usually have a 1:3 aspect ratio (width:height), so that the resulting pixel 16 is square. The subsampling/mapping techniques do not consider the fact that the display's R, G, and B subpixels are spatially displaced; in fact they are assumed to be overlapping in the same manner as they are in the high-resolution image. This type of sampling may be referred to as sub-sampling or traditional sub-sampling.

The pixels of the high-resolution image 4 are shown as three slightly offset stacked squares 8 to indicate their RGB values are associated for the same spatial position (i.e., pixel). One display pixel 16, consisting of one each of the R, G and B subpixels 10, 12 and 14 is shown as part of the lower-resolution triad display 6 in FIG. 1 using dark lines. Other display pixels are shown with lighter gray lines.

In this example, the high-resolution image has 3× more resolution than the display (in both horizontal and vertical dimensions). Since this direct subsampling technique causes aliasing artifacts, various methods are used, such as averaging the neighboring unsampled pixels in with the sampled pixel. Note that the common technique of averaging neighboring elements while subsampling is mathematically equal to prefiltering the high resolution image with a rectangular (rect) filter. Also, note that techniques of selecting a different pixel than the leftmost (as shown in this figure) can be considered as a prefiltering that affects only phase. Thus, most of the processing associated with preventing aliasing can be viewed as a filtering operation on the high-resolution image, even if the kernel is applied only at the sampled pixel positions.

It has been realized that the aforementioned technique does not take advantage of potential display resolution. Background information in this area may be accessed by reference to R. Fiegenblatt (1989), “Full color imaging on amplitude color mosaic displays” Proc. SPIE V. 1075, 199–205; and J. Kranz and L. Silverstein (1990) “Color matrix display image quality: The effects of luminance and spatial sampling,” SID Symp. Digest 29–32 which are hereby incorporated herein by reference.

For example, in the display shown in FIG. 1, while the display pixel 16 resolution is ⅓ that of the high resolution image (source image) 4, the subpixels 10, 12 and 14 are at a resolution equal to that of the source (in the horizontal dimension). If this display were solely to be used by colorblind individuals, it would be possible to take advantage of the spatial positions of the subpixels. This approach is shown in FIG. 2 below, where the R, G, and B subpixels 10, 12 and 14 of the display are taken from the corresponding colors of different pixels 11, 13 and 15 of the high-resolution image. This allows the horizontal resolution to be at the subpixel resolution, which is 3× that of the display pixel resolution.

But what about the viewer of the display who is not color-blind? That is, the majority of viewers. Fortunately for display engineers, even observers with perfect color vision are color blind at the highest spatial frequencies. This is indicated below in FIG. 3, where idealized spatial frequency responses of the human visual system are shown.

Here, luminance 17 refers to the achromatic contact of the viewed image, and chrominance 19 refers to the color content, which is processed by the visual system as isoluminant modulations from red to green, and from blue to yellow. The color difference signals R-Y and B-Y of video are rough approximations to these modulations. For most observers, the bandwidth of the chromatic frequency response is ½ that of the luminance frequency response. Sometimes, the bandwidth of the blue-yellow modulation response is even less, down to about ⅓ of the luminance. Sampling which comprises mapping of color elements from different image pixels to the subpixels of a display pixel triad may be referred to as sub-pixel sampling.

With reference to FIG. 4, in the horizontal direction of the display, there is a range of frequencies that lie between the Nyquist of the display pixel 16(display pixel=triad pixel, giving a triad Nyquist at 0.5 cycles per triad pixel) and the Nyquist frequency of the sub-pixels elements 10, 12 and 14 (0.5 cycles per subpixel=1.5 cycles/triad pixels). This region is shown as the rectangular region 20 in FIG. 4. The resulting sinc functions from convolving the high resolution image with a rect function whose width is equal to the display sample spacing is shown as a light dashed-dot curve 22. This is the most common approach taken for modeling the display MTF (modulation transfer function) when the display is an LCD.

The sinc function resulting from convolving the high-res source image with a rect equal to the subpixel spacing is shown as a dashed curve 24, which has higher bandwidth. This is the limit imposed by the display considering that the subpixels are rect in 1D. In the shown rectangular region 20, the subpixels can display luminance information, but not chromatic information. In fact, any chromatic information in this region is aliased. Thus, in this region, by allowing chromatic aliasing, we can achieve higher frequency luminance information than allowed by the triad (i.e., display) pixels. This is the “advantage” region afforded by using sub-pixel sampling.

For applications with font display, the black & white fonts are typically preprocessed, as shown in FIG. 5. The standard pre-processing includes hinting, which refers to the centering of the font strokes on the center of the pixel, i.e., a font-stroke specific phase shift. This is usually followed by low-pass filtering, also referred to as greyscale antialiasing.

The visual frequency responses (CSFs) shown in FIG. 3 are idealized. In practice, they have a finite falloff slope, as shown in FIG. 6A. The luminance CSF 30 has been mapped from units of cy/deg to the display pixel domain (assuming a viewing distance of 1280 pixels). It is shown as the solid line 30 that has a maximum frequency near 1.5 cy/pixel (display pixel), and is bandpass in shape with a peak near 0.2 cy/pixel triad. The R:G CSF 32 is shown as the dashed line, that is lowpass with a maximum frequency near 0.5 cy/pixel. The B:Y modulation CSF 34 is shown as the dashed-dotted LPF curve with a similar maximum frequency as the R:G CSF, but with lower maximum response. The range between the cutoff frequencies of the chroma CSF 32 and 34 and the luminance CSF 30 is the region where we can allow chromatic aliasing in order to improve luminance bandwidth.

FIG. 6A also shows an idealized image power spectra 36 as a 1/f function, appearing in the figure as a straight line with a slope of −1 (since the figure is using log axes). This spectrum will repeat at the sampling frequency. These repeats are shown for the pixel 38 and the subpixel 40 sampling rates for the horizontal direction. The one occurring at lower frequencies 38 is due to the pixel sampling, and the one at the higher frequencies 40 is due to the subpixel sampling. Note that the shapes change since we are plotting on a log frequency axis. The frequencies of these repeat spectra that extend to the lower frequencies below Nyquist are referred to as aliasing. The leftmost one is chromatic aliasing 38 since it is due to the pixel sampling rate, while the luminance aliasing 40 occurs at higher frequencies because it is related to the higher sub-pixel sampling rate.

In FIG. 6A, no prefiltering has been applied to the source spectra. Consequently, aliasing, due to the pixel sampling (i.e., chromatic aliasing), extends to very low frequencies 35. Thus even though the chromatic CSF has a lower bandwidth than the luminance CSF, the color artifacts may still be visible (depending on the noise and contrast of the display).

In FIG. 6B, we have applied the prefilter ( a rect function equal to three source image pixels), shown in FIG. 4 as a dashed-dotted line 22, to the source power spectrum, and it can be seen to affect the baseband spectrum 42 past 0.5 cy/pixel, causing it to have a slope steeper than −1 shown at 44. The repeats also show the effect of this prefilter. Even with this filter, we see that some chromatic aliasing (the repeated spectrum at the lower frequencies) occurs at frequencies 46 lower than the cut-off frequency of the two chrominance CSFs 32 a and 34 a. Thus it can be seen that simple luminance prefiltering will have a difficult time removing chromatic aliasing, without removing all the luminance frequencies past 0.5 cy/pix (i.e., the “advantage” region).

Since we are relying on the visual system differences in bandwidth as a function of luminance or chrominance to give us a luminance bandwidth boost in the “advantageous region” 20, one possibility is to design the prefiltering based on visual system models as described in C. Betrisey, et al (2000), “Displaced filtering for patterned displays,” SID Symposium digest, 296–299, hereby incorporated herein by reference and illustrated in FIG. 7.

This technique ideally uses different prefilters depending on which color layer, and on which color subpixel the image is being sampled for. Thus there are 9 filters. They were designed using a human visual differences model described in X. Zhang and B. Wandell (1996) “A spatial extension of CIELAB for digital color image reproduction,” SID Symp. Digest 731–734, incorporated herein by reference and shown in the FIG. 7. This was done offline, assuming the image is always black & white. In the final implementation, rect functions rather than the resulting filters are used in order to save computations. In addition, there is still some residual chromatic error that can be seen because the chromatic aliasing extends down to lower frequencies than the chromatic CSF cutoff (as seen in FIG. 6B).

However, the visual model used does not take into account the masking properties of the visual system which cause the masking of chrominance by luminance when the luminance is at medium to high contrast levels. So, in larger fonts the chromatic artifacts, which lie along the edges of the font, are masked by the high luminance contrast of the font. However, as the font size is reduced the luminance of the font reduces, and then the same chromatic artifacts become very visible (at very small fonts for example, the b/w portion of the font disappears, leaving only a localized color speckle).

SUMMARY OF THE INVENTION

Embodiments of the present invention comprise methods and systems that rely less on filtering and its assumptions of linearity. These embodiments can take into account the specific localized phases of the various fontstrokes, or other image features. The methods of embodiments of the present invention are compensation based, wherein a signal is added to the image that will cancel out the chromatic errors caused by the subpixel addressing. In some embodiments, only the lower frequency chromatic artifacts are cancelled, since the high frequency artifacts cannot be seen due to the lower bandwidth of the chromatic CSFs, as shown in FIG. 6A.

Embodiments of the present invention provide for higher resolution luminance signals with reduced visibility of chromatic aliasing, particularly when the display is viewed no closer than designed specifications. Furthermore, the methods of the present invention are not restricted to use with black & white source images or text documents. These methods can enhance the horizontal resolution for color images in general. Also, by using more advanced embodiments, the human visual effect of masking can be taken into account, allowing for higher luminance edge enhancement by allowing more chromatic aliasing near high-contrast luminance edges.

Embodiments of the present invention convert a high-resolution image to a lower-resolution image by an error reducing method which yields a lower-resolution image which more accurately represents the original high-resolution image. A high-resolution image may be sampled in a sub-pixel sampling simulation to simulate the visible error caused by sub-pixel sampling. Since the sampling is only simulated, the resolution does not have to change. Once the error has been determined, the error can be subtracted from the original image to create an error image. A visual model may then be used to remove non-visually-detectable information from the error image creating a modified error image which represents the visible error. This modified visible error image may be referred to as the compensated image.

This compensated image may then be added to the original image thereby adding to the original image the error that will, subsequently, be removed during sub-pixel sampling. The compensated image is then sampled using a sub-pixel sampling process wherein the added error is removed as a result of the process and an improved lower-resolution image results.

BRIEF DESCRIPTION OF THE DRAWINGS

In order that the manner in which the above-recited and other advantages and objects of the invention are obtained, a more particular description of the invention briefly described above will be rendered by reference to specific embodiments thereof which are illustrated in the appended drawings. Understanding that these drawings depict only typical embodiments of the invention and are not therefore to be considered to be limiting of its scope, the invention will be described and explained with additional specificity and detail through the use of the accompanying drawings in which:

FIG. 1 is a diagram showing traditional image sampling for displays with a triad pixel configuration;

FIG. 2 is a diagram showing sub-pixel image sampling for a display with a triad pixel configuration;

FIG. 3 is a graph showing idealized CSFs mapped to a digital frequency plane;

FIG. 4 is a graph showing an analysis of the pixel Nyquist and sub-pixel Nyquist regions which denotes the advantage region;

FIG. 5 shows typical pre-processing techniques;

FIG. 6A is a graph showing an analysis using 1/f-power spectra repeated at pixel sampling and sub-pixel sampling frequencies;

FIG. 6B is a graph showing an analysis using 1/f-power spectra repeated at pixel sampling and sub-pixel sampling frequencies with improvements due to pre-processing;

FIG. 7 is a block diagram showing a known use of a visual model;

FIG. 8 is a block diagram showing a general embodiment of the present invention;

FIG. 9 is a block diagram showing an embodiment of the present invention which employs pre-processing;

FIG. 10 is a block diagram showing an embodiment of the present invention which uses filtering of separated luminance and chrominance channels;

FIG. 11 is a block diagram of an embodiment of the present invention which employs a visual model utilizing masking of chroma by luminance; and

FIG. 12 is a block diagram of an embodiment of the present invention using a visual model which utilizes masking of chroma by luminance with a more accurate multi-channel, divided-frequency range visual model.

DETAILED DESCRIPTION OF THE PREFERRED EMBODIMENTS

The currently preferred embodiments of the present invention will be best understood by reference to the drawings, wherein like parts are designated by like numerals throughout. The figures listed above are expressly incorporated as part of this detailed description.

It will be readily understood that the components of the present invention, as generally described and illustrated in the figures herein, could be arranged and designed in a wide variety of different configurations. Thus, the following more detailed description of the embodiments of the methods and systems of the present invention is not intended to limit the scope of the invention but it is merely representative of the presently preferred embodiments of the invention.

Elements of embodiments of the present invention may be embodied in hardware, firmware and/or software. While exemplary embodiments revealed herein may only describe one of these forms, it is to be understood that one skilled in the art would be able to effectuate these elements in any of these forms while resting within the scope of the present invention.

It is to be understood that the image may include a channel that includes at least 60% of the luminance of the image and/or the processing may be based upon re-sampling the luminance information of the image which includes at least 60% of the luminance of the image.

Some embodiments of the present invention are summarized in the block diagram shown in FIG. 8 wherein a high-resolution image, such as RGB high-resolution image 70, is modified. High-resolution image 70 is sampled in a sub-pixel sampling simulation 72 to simulate the visible error caused by sub-pixel sampling. Since the sampling is only simulated, the resolution does not have to change. Once the error has been ascertained, the error can be subtracted 74 from the original image 70. A visual model 76, then removes non-detectable information from the error image creating a modified error image which represents the visible error. This modified error image may be referred to as the compensated image and is not limited to the 0–255 R, G, B range of the source image 70, as it allows for the use of negative values.

The compensated image is then added to the original image 70 thereby adding to the original image 70 the error that will be removed during sub-pixel sampling. The compensated image 82 is then sampled using a sub-pixel sampling process 80 wherein the added error is removed as a result of the process and an improved lower-resolution image results.

A key aspect is that the visible error that is caused by the sub-pixel sampling is simulated and then isolated from the high-resolution source image. The simulation is maintained at the same resolution as the higher resolution source image. When such an error is added by the subpixel sampling process, it will be cancelled out in the final image.

These methods of embodiments of the present invention make it possible to cancel out the chromatic aliasing occurring at the lower frequencies. Since chromatic aliasing frequencies that are originally so high that they fold over at the Nyquist to very low frequencies are the most visible, these are the ones of primary concern.

The visual model 76 of embodiments of the present invention is of a different form than the known model used in the Betrisey approach. In known models, such as Betrisey, the visual model is a difference metric where two images are input and the output is an image indicating where visual differences occur. In the Betrisey approach, this image of visible differences is integrated in a squared form to arrive at a single number metric. These known models are described in X. Zhang and B Wandell (1996), “A spatial extension of CIELAB for digital color image reproduction, SID Symposium Digest 731–734; C. Betrisey, et al. (2000), “Displaced filtering for patterned displays,” SID Symposium Digest, 296–299; and S. Daly (1993), “Visible Differences Predictor,” Ch. 14 of Digital Images and Human Vision, ed. by A. B. Watson, MIT Press. These references are incorporated herein by reference.

In embodiments of the present invention, however, the form of the visual model 76 is to remove image content that is not visible to the eye. Consequently, the visual model does not compute the visible difference between images, but rather acts on a single image. One way to achieve this is to filter by the appropriate CSFs and core by the threshold. In FIG. 8, the visual model 76 is shown in generic form.

In reference to FIG. 9, the methods of the present invention can be used in conjunction with standard pre-process methods 84, such as the more traditional techniques of hinting and low-pass filtering. Once standard pre-process methods 84 are performed, the image is treated in the same manner as those without pre-process methods. That is, High-resolution image 70 is pre-processed 84 followed by sampling in a sub-pixel sampling simulation 72 to simulate the visible error caused by sub-pixel sampling. Once the error has been ascertained, the error can be subtracted 74 from the original image 70. A visual model 76, then removes non-detectable information from the error image creating a modified error image which represents the visible error. The compensated image is then added to the original image 70 thereby adding the error that will be removed during actual sub-pixel sampling 80. The compensated image 82 is then sampled using a sub-pixel sampling process 80 wherein the added error is removed as a result of the process and an improved lower-resolution image results.

Many embodiments of visual model 76 may be used in conjunction with embodiments of the present invention. In reference to FIG. 10, a simple first embodiment of the present invention is explained in which a high-resolution image 70 is processed. Image 70 may be pre-processed 84 if desired by a user or processed directly without pre-processing. The image 70 is run through sub-pixel sampling simulation 72 to determine the error associated with sub-pixel sampling. The error is then subtracted 74 from original image 70 to produce an error image which is processed through visual model 76. In this embodiment, visual model 76 comprises a conversion 90 from RGB to LAB. This conversion 90 results in an image expressed in three channels which isolate luminance characteristics from chromatic characteristics. While several color models may be used, the CIELAB model is exemplary and an equivalent model is preferred in this simple embodiment. A simpler embodiment using linear Y, R-Y, and B-Y signals is also possible.

Once the error image has been converted, the luminance channel 92 and the chrominance channels 94 and 96 are filtered to remove the invisible error from the error image. In preferred embodiments, these filtering operations typically comprise filtering and a spatial coring operation to remove localized frequencies whose amplitudes are too small to see. Different filters may be used for each channel and some channels may not be filtered as required for specific applications, however filtering is generally a frequency specific operation. Typically, the luminance channel 92 will be filtered separately from the chrominance channels 94 and 96.

After filtering, the channels 92, 94 and 96 are combined 98 into a single LAB format image which represents the visible error associated with sub-pixel sampling. This LAB visible error image is subsequently re-converted 100 back to an RGB format visible error image 101. The RGB visible error image 101 is then combined 78 with the original image 70 to form a compensated image 82 which compensates for errors introduced through sub-pixel sampling. This compensated image 82 is then sampled using sub-pixel sampling 80 wherein the added visible error compensation 101 is cancelled in the sampling process yielding a lower-resolution image with fewer errors than one created through simple sub-pixel sampling alone.

In a second embodiment of the present invention, as illustrated in FIG. 11, edge effects or masking as well as frequency effects are treated. Generally, the methods of embodiments of the present invention are performed on a high-resolution image such as RGB high-resolution image 110. Pre-processing 112 may be performed prior to applying the methods of embodiments of the present invention, but is not required.

High-resolution image 110 is run through a sub-pixel sampling simulation 114 which determines the error introduced during sub-pixel sampling by performing the sampling simulation and converting the sampled image to its original resolution for comparison to the original. The sampled and converted image is compared 116 to the original image to determine the error associated with sub-pixel sampling. This error is subtracted from the original image thereby creating an error image 118 which is sent to a visual model 76 for further treatment.

Within the visual model 76, the error image, in a RGB or similar format is converted 120 to a LAB or similar format thereby segregating luminance data from chrominance data. After conversion to a luminance-segregated format, such as LAB, the separate channels of luminance 122 and chrominance 124 and 126 are filtered according to frequency relationships as described above for other embodiments.

After filtering 122, 124 and 126, this embodiment of the present invention takes into account the visual property of masking, particularly the masking of chrominance by luminance. The masking signal is taken from the source image 110 content rather than the error image. The source image 110 is converted 128 to a luminance-segregated format such as LAB from which the luminance data is extracted 130. In some embodiments, only the luminance channel 136 is masked, however, chromatic channels 134 and 132 may also be masked. Masking is performed as a pixel-wise comparison to account for edge effects. Contrast is an amplitude differential signal, for example, subtracting the mean of the entire L image from the L image then using the absolute value as being proportional to contrast. A higher contrast signal level in L at a given position causes more masking of the L, R/G and B/Y signals at the same position. The masking is simulated by dividing these signals by the mask signal output from step 130, and then coring. Coring is a process by which a signal's value is changed to zero when the absolute value of the signal amplitude becomes less than a given threshold value.

Once masking has taken place, the segregated channels are joined 138 back into a combined format such as LAB 138 and the combined format file is then converted 140 back to the original image format, for example RGB. The resulting image represents the visible error 142 associated with sub-pixel sampling.

This resulting error image 142 is subsequently combined with the original high-resolution image 144 to create a compensated image 146 in which a correction is introduced which is substantially similar, but opposite to the error introduced during sub-pixel sampling. This compensated image 146, when actually sampled 148 will result in a display image 150 which contains fewer errors than a directly sampled image without error correction. This is due to the cancellation of the sampling errors by the visible error 142 introduced 144 before sampling 148.

This second embodiment of the present invention, as illustrated in FIG. 11, can only crudely model the masking effect, since in the actual visual masking process, only signals within a limited range near the similar frequency of the mask are masked, as well as a limited spatial region. However, for images consisting solely of edges and lines, a 1/f-power spectra may be assumed. Thus at any given frequency and orientation, the signal content at higher frequencies with the same orientation will be less. Thus this approach will overestimate masking, but since that will result in more error content in the compensated image, the net effect is that more chromatic aliasing is removed than necessary. This will result in less luminance sharpness, but it will still be more than methods that do not use masking aspects.

In reference to FIG. 12, a third embodiment of the present invention employs a more complete visual model 151 capable of predicting masking more accurately by the use of multiple frequency channels. Although only four channels are shown, their actual number may be greater or lesser, and they are typically both bandpass and limited in orientation. Example channels are described in S. Daly (1993), “Visible Differences Predictor,” Ch. 14 of Digital Images and Human Vision, ed. By A. B. Watson, MIT Press; and J. Lubin (1995), “A Visual Discrimination Model for Imaging System Design and Evaluation,” Ch. 10 of Vision Models for Target Detection and Recognition, ed. by E. Peli, World Scientific Press; these references being incorporated herein by reference. While this version is processor intensive, an increase in computational technology may render it more practical.

In this third embodiment, a high-resolution image 110 may be optionally pre-processed 112 before sub-pixel sampling simulation 114. As in previously described embodiments, sub-pixel sampling simulation 114 is used to determine the error 118 introduced by sub-pixel sampling. This error image is extracted 116 from the image through direct comparison of the “post-processed” image to the original image 110 at the original image resolution. Generally, the lower resolution “post-processed” image is increased in resolution for comparative purposes. Once this error image 118 is obtained, the error image 118 may be processed in a visual model 151 of this embodiment.

As in other embodiments, the error image 118 is converted from RGB or similar formats to a luminance-segregated format such as LAB 152. Using this type of format, luminance and chrominance data are separated into channels wherein each channel is further divided into frequency ranges using filter bank decomposition 154, 156 and 158. Each frequency range within each channel is then filtered using band scaling 160, 162 and 164.

Edge effects are also accounted for by converting the original source image to a luminance-segregated format such as LAB 166 followed by filter bank decomposition of the luminance channel 168 from the original image 110. Generally, the segregated chrominance channels 165 are not used in the masking process. Following filter bank decomposition 168, the ranges are filtered via band scaling or similar procedures as performed for the main error image channels 160, 162 and 164. These signals created through luminance channel band scaling 170 may be used for masking the various luminance and chrominance channels 172, 174 and 176. The masking computation is similar to that described in conjunction with FIG. 11, however, in the computation of this embodiment, the masking signal from a specific frequency band only affects the corresponding frequency band of the error image.

Once masking has been completed for each frequency range of each channel, the channels may be combined 178 to form a standard LAB or similar format file. This combined file may then be converted back to the original image format such as RGB 180. This RGB or similar file 180 represents the visible error introduced during sub-pixel sampling. The visible error 180 is subsequently subtracted 188 from or otherwise accounted for in the original high-resolution source file 110 thereby creating a compensated image 182.

When the compensated image 182 is run through sub-pixel sampling 184 the error introduced in the sampling process will cancel the visible error combined 188 into the original image 110 yielding a display image 186 with fewer errors than an image that is directly sampled without correction. This third embodiment uses a more accurate visual model with multi-channel capability that provides for masking of chroma by luminance.

The present invention may be embodied in other specific forms without departing from its spirit or essential characteristics. The described embodiments are to be considered in all respects only as illustrative and not restrictive. The scope of the invention is, therefore, indicated by the appended claims rather than by the foregoing description. All changes which come within the meaning and range of equivalency of the claims are to be embraced within their scope. 

1. A method for re-sampling an image comprising the steps of: (a) coverting said image to provide a single channel of said image comprising at least 60% of the luminance of said image; (b) attenuating at least a portion of the lower frequency luminance information of said channel with respect to at least a portion of the higher frequency luminance information of said channel; (c) re-sampling luminance information of said image; and (d) displaying said re-sampling image on a display.
 2. The method of claim 1 further comprising attenuating at least a portion of lower frequency chromatic information with respect to at least a portion of higher frequency chromatic information resulting from said re-sampling of said luminance information.
 3. A method for re-sampling an image comprising the steps of: (a) re-sampling luminance information of said image, wherein said luminance information is at least 60% of the luminance of said image; (b) attenuating at least a portion of lower frequency chromatic information with respect to at least a portion of higher frequency chromatic information resulting from said re-sampling of said luminance information and (c) displaying said re-sampling image on said display.
 4. The method of claim 3 wherein said re-sampling of said luminance includes pixel re-sampling.
 5. The method of claim 3 wherein said attenuating is using a high pass filter.
 6. The method of claim 3 wherein said re-sampling of said luminance information results in two chromatic channels, where each of said chromatic channels is attenuated in a different manner.
 7. A method for re-sampling an image comprising a plurality of channels, wherein a first one of said channels has a luminance component comprising at least 60% of the luminance of said image, wherein in a second one of said channels has a color component; (a) re-sampling said first channel of said image; (b) attenuating at least a portion of lower frequency chromatic information with respect to at least a portion of higher frequency chromatic information resulting from said re-sampling of said first channel of said image; (c) re-sampling said second channel of said image; and (d) displaying said re-sampled image on said display.
 8. The method of claim 7 wherein said luminance component comprises at least 70% of the luminance of said image.
 9. The method of claim 7 wherein said luminance component comprises at least 80% of the luminance of said image.
 10. The method of claim 7 wherein said luminance component comprises at least 90% of the luminance of said image.
 11. The method of claim 7 wherein said plurality of channels are color difference channels. 